The fast development of the deep learning (DL) techniques in the most recent years has drawn attention from both academia and industry. And there have been increasing applications of the DL techniques in many complex real-world situations, including computer vision, medical diagnosis, and natural language processing. The great power and flexibility of DL can be attributed to its hierarchical learning structure that automatically extract features from mass amounts of data. In addition, DL applies an end-to-end solving mechanism, and directly generates the output from the input, where the traditional machine learning methods usually break down the problem and combine the results. The end-to-end mechanism considerably improve the computational...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
This paper introduced a new deep learning framework for fault diagnosis in electrical power systems....
This thesis provides deep machine learning-based solutions to real-time mitigation of power quality ...
Unprecedented high volumes of data are available in the smart grid context, facilitated by the growt...
With the increasing integration of variational renewable energy and the more active demand side resp...
This PhD thesis thoroughly examines the utilization of deep learning techniques as a means to advanc...
The advent of deep learning has elevated machine intelligence to an unprecedented high level. Fundam...
University of Minnesota Ph.D. dissertation. January 2019. Major: Electrical Engineering. Advisor: Ge...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
The complexity and nonlinearities of the modern power grid render traditional physical modeling and ...
Condition monitoring of high voltage apparatus is of much importance for the maintenance of electric...
This paper focuses on a powerful and comprehensive overview of Deep Learning (DL) techniques on Dist...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
With population increases and a vital need for energy, energy systems play an important and decisive...
Sustainable energy management is an inexpensive approach for improved energy use. However, the resea...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
This paper introduced a new deep learning framework for fault diagnosis in electrical power systems....
This thesis provides deep machine learning-based solutions to real-time mitigation of power quality ...
Unprecedented high volumes of data are available in the smart grid context, facilitated by the growt...
With the increasing integration of variational renewable energy and the more active demand side resp...
This PhD thesis thoroughly examines the utilization of deep learning techniques as a means to advanc...
The advent of deep learning has elevated machine intelligence to an unprecedented high level. Fundam...
University of Minnesota Ph.D. dissertation. January 2019. Major: Electrical Engineering. Advisor: Ge...
This thesis was submitted for the award of Doctor of Philosophy and was awarded by Brunel University...
The complexity and nonlinearities of the modern power grid render traditional physical modeling and ...
Condition monitoring of high voltage apparatus is of much importance for the maintenance of electric...
This paper focuses on a powerful and comprehensive overview of Deep Learning (DL) techniques on Dist...
Machine learning (ML) applications have seen tremendous adoption in power system research and applic...
With population increases and a vital need for energy, energy systems play an important and decisive...
Sustainable energy management is an inexpensive approach for improved energy use. However, the resea...
peer reviewedThis paper reviews existing works on (deep) reinforcement learning considerations in e...
This paper introduced a new deep learning framework for fault diagnosis in electrical power systems....
This thesis provides deep machine learning-based solutions to real-time mitigation of power quality ...